Talend Data Engineer 24 Month FTC

Hatfield
3 weeks ago
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Talend Data Engineer - £60,000 | Hybrid (Hatfield, 2 Days Onsite) | 24-Month FTC | January Start

A leading UK utility organisation is embarking on an ambitious two-year programme to build a truly open, data-driven culture where advanced analytics and data science power smarter, faster decisions. To accelerate this vision, they are seeking an experienced Talend Data Engineer to join their established Data and Architecture Team on a 24-month fixed-term contract.

The Role:

Design, build, and maintain resilient, automated data pipelines using Talend Data Integration.
Work with modern AWS technologies including S3, Glue, Redshift, and Spectrum.
Optimise data workflows to ensure reporting, analytics, and performance management are powered by high-quality, trustworthy data.
Collaborate with architects, Qlik developers, and business stakeholders to translate complex requirements into scalable solutions.
Contribute to data policies, standards, and continuous improvement initiatives within an Agile (Scrum) environment.The Ideal Candidate:

Proven experience in Data Engineering with strong expertise in Talend Data Integration (essential).
Solid knowledge of AWS cloud services and SQL.
Experience in ETL design, data warehousing, and data governance principles.
Familiarity with REST/SOAP APIs and scripting languages (Shell, Python, PowerShell).
Excellent problem-solving and communication skills, with experience working in Agile teams.
Bonus: Knowledge of MDM, predictive analytics, or water industry regulatory reporting.Why Apply?

Be part of a transformational programme driving innovation at scale.
Work with cutting-edge AWS technologies and expand your skillset.
Join a collaborative, forward-thinking team where data insights directly influence strategy and operations.
To discuss this role further please submit your CV or contact Brandon Forbes

Tenth Revolution Group are the go-to recruiter for Data & AI roles in the UK offering more opportunities across the country than any other recruitment agency. We're the proud sponsor and supporter of SQLBits, Power Platform World Tour, and the London Fabric User Group. We are the global leaders in Data & AI recruitment

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